Pose-Free Facial Landmark Fitting via Optimized Part Mixtures and Cascaded Deformable Shape Model

Xiang Yu, Junzhou Huang, Shaoting Zhang, Wang Yan, Dimitris N. Metaxas
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引用次数: 251

Abstract

This paper addresses the problem of facial landmark localization and tracking from a single camera. We present a two-stage cascaded deformable shape model to effectively and efficiently localize facial landmarks with large head pose variations. For face detection, we propose a group sparse learning method to automatically select the most salient facial landmarks. By introducing 3D face shape model, we use procrustes analysis to achieve pose-free facial landmark initialization. For deformation, the first step uses mean-shift local search with constrained local model to rapidly approach the global optimum. The second step uses component-wise active contours to discriminatively refine the subtle shape variation. Our framework can simultaneously handle face detection, pose-free landmark localization and tracking in real time. Extensive experiments are conducted on both laboratory environmental face databases and face-in-the-wild databases. All results demonstrate that our approach has certain advantages over state-of-the-art methods in handling pose variations.
基于优化零件混合和级联可变形形状模型的无姿态面部地标拟合
本文研究了单摄像头下的人脸标记定位与跟踪问题。我们提出了一种两阶段级联的可变形形状模型,以有效地定位头部姿态变化较大的面部标志。在人脸检测方面,我们提出了一种组稀疏学习方法来自动选择最显著的人脸标志。通过引入三维脸型模型,利用procrustes分析实现无姿态面部地标初始化。对于变形,第一步采用约束局部模型的均值偏移局部搜索,快速逼近全局最优解。第二步使用组件智能活动轮廓来区分细化细微的形状变化。我们的框架可以同时处理人脸检测、无姿态地标定位和实时跟踪。在实验室环境人脸数据库和野外人脸数据库上进行了大量的实验。所有结果都表明,我们的方法在处理姿势变化方面比最先进的方法具有一定的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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